Principal Data Analyst | City Health Care Partnership CIC

City Health Care Partnership CIC
Hull
4 days ago
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This is a great opportunity to build advanced analytical leadership skills while supporting work that improves community services and patient care across CHCP. You’ll join our Business Intelligence and Analytics team, working closely with clinical, operational and senior leaders. Your insight will help teams understand demand, risk and performance so they can make informed decisions. You’ll also support the development of our BI tools and help strengthen data literacy across the organisation.


What you’ll do:

  • Lead complex analytical projects that support operational decisions and strategic planning
  • Create clear, reliable analysis that helps services understand trends, risks and variation
  • Develop and improve BI systems, dashboards and data models
  • Provide expert advice on analytical methods and data interpretation
  • Support colleagues through training, coaching and practical guidance on using BI tools

What we’re looking for:

  • Strong experience delivering complex analysis, ideally in health or social care
  • Advanced skills in analytical methods and tools such as SQL, Power BI or R/Python
  • Ability to explain complex information clearly to non-technical audiences
  • Experience leading or supporting teams and balancing competing priorities
  • A collaborative approach and willingness to build capability across CHCP

We welcome applicants from all backgrounds and value perspectives that help us deliver fair, inclusive and effective services for our communities.


At CHCP, we’re passionate about people, we recognise that high quality care is delivered by high quality professionals who are appreciated, respected, and supported, which is why we want to give all our colleagues the chance to shine.


Work with us and you’ll be more than just a number. Our people are our shareholders, and their thoughts and opinions are always heard; at CHCP you have a real voice.


Compassion is at the heart of our business; our colleagues work together to deliver first class healthcare to thousands of people. Local diversity demands diverse roles, that’s why we have vacancies to suit everybody. No matter your role at CHCP, we’ll support you to thrive.


CHCP CIC employees have access to an excellent range of benefits; for further information, please click on the ‘CHCP Perks and Rewards’ link.


Please see the job description and person specification attached to this job advert for full details on the role.


This advert closes on Tuesday 24 Mar 2026


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